Prediction of the Opponent's Preference in Bilateral Multi-issue Negotiation Through Bayesian Learning
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چکیده
In multi-issue negotiation, agents’ preferences are extremely important factors for reaching mutual beneficial agreements. However, agents would usually keeping their preferences in secret in order to avoid be exploited by their opponents during a negotiation. Thus, preference modelling has become an important research direction in the area of agent-based negotiation. In this paper, a bilateral multi-issue negotiation approach is proposed to help both negotiation agents to maximise their utilities under a setting that the opponent agent’s preference is private information. In the proposed approach, Bayesian learning is employed to analyse the opponent’s historical offers and approximately predicate the opponent’s preference over negotiation issues. Besides, a counter-offer proposition algorithm is integrated in our approach to help agents to generate mutual beneficial offers based on the preference learning result. Also, the experimental results indicate the good performance of the proposed approach in aspects of utility gain and negotiation efficiency.
منابع مشابه
Bayesian-based preference prediction in bilateral multi-issue negotiation between intelligent agents
Agent negotiation is a form of decision making where two or more agents jointly search for a mutually agreed solution to a certain problem. In multiissue negotiation, with information available about the agents’ preferences, a negotiation may result in a mutually beneficial agreement. In a competitive negotiation environment, however, self-interested agents may not be willing to reveal their pr...
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تاریخ انتشار 2014